Acute Myocardial Infarction Clinical Intelligent Decision Support System
NCT07367399 · Status: ACTIVE_NOT_RECRUITING · Type: OBSERVATIONAL · Enrollment: 15000
Last updated 2026-01-26
Summary
Acute Myocardial Infarction (AMI) remains the leading cause of cardiovascular mortality globally. In China, while the incidence of AMI is escalating at an annual rate of 5.2%, significant clinical challenges persist: diagnostic delays in primary care facilities exceed 40%, and the "Door-to-Balloon" (D2B) compliance rate in tertiary hospitals stagnates at a mere 65%. These figures underscore systemic deficiencies, including inefficient emergency response, regional resource disparities, and fragmented longitudinal care. Although Large Language Models (LLMs) provide a transformative technical foundation for AMI management, their clinical translation is hindered by critical bottlenecks, such as non-standardized data interfaces, limited model interpretability, inadequate hardware infrastructure at the grassroots level, and the inherent tension between data privacy and training requirements.
This research proposes a comprehensive implementation strategy for an AI-driven intelligent decision-making system for AMI. On a theoretical level, the study establishes a tripartite framework of "Technological Adaptation, Scenario Implementation, and Safeguard Mechanisms." By introducing a data governance scheme based on federated learning and multimodal fusion, and constructing a "Technical-Clinical-Economic" multidimensional evaluation model, this work bridges the theoretical divide between advanced technology and clinical practice. On a practical level, the study develops adaptive gateways and lightweight models to facilitate pervasive deployment in resource-constrained settings, optimizes the full-cycle clinical workflow to improve patient outcomes, and provides a scalable, replicable pathway for implementation.
Focusing on four core challenges-technological compatibility, clinical workflow integration, the balance between privacy and performance, and the establishment of scientific evaluation systems-this research aims to surmount existing translation barriers. It seeks to enhance the quality and efficiency of AMI care while providing a seminal reference for the clinical transformation of AI in other medical specialties.
Conditions
- Acute Myocardial Infarction
- Large Language Models
- Clinical Decision Support System
Sponsors & Collaborators
-
Beijing Anzhen Hospital
lead OTHER
Eligibility
- Min Age
- 18 Years
- Sex
- ALL
- Healthy Volunteers
- No
Timeline & Regulatory
- Start
- 2018-01-01
- Primary Completion
- 2028-12-31
- Completion
- 2028-12-31
Countries
- China
Study Locations
More Related Trials
-
Warning Model of Myocardial Remodeling After Acute Myocardial Infarction Using Multimodal Feature Structure Technology
NCT06062316 ·Status: ACTIVE_NOT_RECRUITING
-
Prediction of Coronary Artery Disease Based on Multimodal, Non-contact Information With Artificial Intelligence
NCT06092801 ·Status: COMPLETED
-
Early Warning and Classification Model for Acute Non-traumatic Chest Pain
NCT06196307 ·Status: RECRUITING
-
Mulltimodal Dynamic Risk Assessment Systems of Heart Failure in Patients With Myocardial Infarction.
NCT05760157 ·Status: RECRUITING
-
a Foundational Model for Cardiovascular Disease Diagnosis and Prediction
NCT06591923 ·Status: NOT_YET_RECRUITING
-
The ALERT-Pilot Study
NCT03317691 ·Status: UNKNOWN
-
Research on the Diagnostic Value of Machine Learning Model Based on Clinical Data in Patients With Coronary Heart Disease
NCT05018715 ·Status: UNKNOWN
-
Clinical Features and Linked MEchanisms in Acute Risk-free AMI
NCT06716177 ·Status: NOT_YET_RECRUITING
-
Incidence Rate of Heart Failure After Acute Myocardial Infarction With Optimal Treatment
NCT03297164 ·Status: COMPLETED
-
Assessment of the Diagnostic Performance of the Detection System and Establishment of an Intelligent and Rapid Triage Model
NCT06864676 ·Status: NOT_YET_RECRUITING
-
Exploration of Early Warning System of Cardiac Arrest and Early Intervention
NCT05921851 ·Status: UNKNOWN
-
Multi-omics Study of Clinical Endpoints in CHD
NCT03797339 ·Status: UNKNOWN
-
Performance Evaluation of Artificial Intelligence Screening Model in Coronary Heart Disease Detection
NCT06658600 ·Status: ACTIVE_NOT_RECRUITING ·Phase: NA
-
Using Retinal Photograph Based AI to Predict Incident Coronary Heart Disease
NCT06695273 ·Status: NOT_YET_RECRUITING ·Phase: NA
-
The Prognosis of Acute Myocardial Infarction
NCT02737956 ·Status: COMPLETED
-
Clinical Features and Long-Term Prognosis in Young Patients With Acute Myocardial Infarction
NCT07128667 ·Status: NOT_YET_RECRUITING
-
Acute Myocardial Infarction Study in Northeastern China
NCT04451967 ·Status: UNKNOWN
-
Prognostic Value of Right Ventricular Myocardial Strain in Patients With Acute Myocardial Infarction
NCT05404555 ·Status: UNKNOWN
-
Home-based Remote Monitoring
NCT05295303 ·Status: NOT_YET_RECRUITING ·Phase: NA
-
Use of ARIA in Risk Stratification for Chest Pain Patients Presenting to Emergency Departments Suspected Acute Coronary Syndrome
NCT05735938 ·Status: TERMINATED
-
Cardiac Biomarkers and Analytical Methods
NCT05781724 ·Status: COMPLETED
-
China Acute Myocardial Infarction Registry
NCT01874691 ·Status: COMPLETED
-
Enhanced Prediction Model for Major Adverse Events Following Acute Myocardial Infarction
NCT07250152 ·Status: NOT_YET_RECRUITING
-
A Cardiac Registry to Evaluate and Manage the hsTnI Categorical CVD Risk in Subjects Undergoing Preventive Health Checks (PHC).
NCT04903041 ·Status: SUSPENDED
-
Risk Prediction Model of MACE in Patients With AMI Based on Multi-modal Machine Learning
NCT06767852 ·Status: NOT_YET_RECRUITING